Priority areas for applying artificial intelligence to pedagogical education

Oʻzbekcha

SUN’IY INTELLEKT ASOSIDA MATEMATIKA TA’LIMIDA MUAMMOLI O‘QITISH VA MODELLASHTIRISH ORQALI TALABALARNING ANALITIK KOMPETENSIYALARINI RIVOJLANTIRISH

Published
25.04.2026
Journal
Priority areas for applying artificial intelligence to pedagogical education
Issue
Priority areas for applying artificial intelligence to pedagogical education
Pages
95-106
DOI
10.5281/zenodo.19828349

Authors

Abstract

Ushbu maqolada matematika ta’limida sun’iy intellekt (SI) vositalariga asoslangan muammoli o‘qitish va matematik modellashtirish orqali talabalarning analitik kompetensiyalarini rivojlantirish metodikasi yoritiladi. Muammoli o‘qitishning “muammoli vaziyat - matematik model - SI tahlili - xulosa” bosqichlari SI vositalari (Grok, GPT-4o, Wolfram Alpha) bilan uyg‘unlashtirilgan. Talabalar real matematik muammolarni modellashtirish, parametrlarni tahlil qilish va asoslangan xulosalar chiqarish ko‘nikmalarini egallaydi. Maqolada amaliy topshiriqlar namunalari va analitik kompetensiyalarni baholash mezonlari keltirilgan

Keywords

matematik modellashtirish matematika ta’limi muammoli o‘qitish sun’iy intellekt analitik kompetensiyalar GPT-4o Grok Wolfram Alpha

Other language versions

Русский
В данной статье освещается методика развития аналитических компетенций студентов через проблемное обучение и математическое моделирование в преподавании математики с использованием инструментов искусственного интеллекта (ИИ). Этапы проблемного обучения «проблемная ситуация - математическая модель - анализ с помощью ИИ - вывод» интегрированы с инструментами ИИ (Grok, GPT-4o, Wolfram Alpha). Студенты приобретают навыки моделирования реальных математических проблем, анализа параметров и обоснованного вывода заключений. В статье представлены примеры практических заданий и критерии оценки аналитических компетенций.
искусственный интеллект математическое моделирование обучение математике проблемное обучение аналитические компетенции GPT-4o Grok Wolfram Alpha.
English
This article presents a methodology for developing students’ analytical competencies through problem-based learning and mathematical modeling in mathematics education using artificial intelligence (AI) tools. The stages of problem-based learning - “problem situation - mathematical model - AI analysis - conclusion” - are integrated with AI tools (Grok, GPT-4o, Wolfram Alpha). Students acquire skills in modeling real mathematical problems, analyzing parameters, and drawing justified conclusions. The article provides examples of practical tasks and criteria for assessing analytical competencies.
artificial intelligence mathematical modeling mathematics education problem-based learning analytical competencies GPT-4o Grok Wolfram Alpha

References

Polya G. How to Solve It: A New Aspect of Mathematical Method. - Princeton: Princeton University Press, 1945. - 280 p. [1. B.56]
2. Dewey J. How We Think. - Boston: D.C. Heath & Co, 1910. - 224 p. [2. B.34]
3. O‘zbekiston Respublikasi Prezidenti. Oliy ta’lim tizimini 2030-yilgacha rivojlantirish konsepsiyasini tasdiqlash to‘g‘risida: PF-5847-son Farmon. - Toshkent, 2019. [3. B.6]
4. Blum W., Niss M. Applied Mathematical Problem Solving, Modelling, Applications, and Links to Other Subjects: State, Trends and Issues in Mathematics Instruction // Educational Studies in Mathematics. - 1991. - Vol. 22, No. 1. - P. 37-68. [4. B.45]
5. OECD. Artificial Intelligence and the Future of Skills: Volume 1, Capabilities and Assessments. - Paris: OECD Publishing, 2021. - 180 p. [5. B.78]
6. Wolfram S. An Elementary Introduction to the Wolfram Language. - Champaign: Wolfram Media, 2017. - 324 p. [6. B.23]
7. OpenAI. GPT-4 Technical Report // arXiv preprint. - 2023. - arXiv:2303.08774. [7. B.12]
View PDF Related articles